首页> 外文OA文献 >A Bayesian Approach to Estimating Coupling Between Neural Components: Evaluation of the Multiple Component, Event-Related Potential (mcERP) Algorithm
【2h】

A Bayesian Approach to Estimating Coupling Between Neural Components: Evaluation of the Multiple Component, Event-Related Potential (mcERP) Algorithm

机译:用于估计神经元之间耦合的贝叶斯方法:评估多元,事件相关电位(mcERP)算法

摘要

Accurate measurement of single-trial responses is key to a definitive use of complex electromagnetic and hemodynamic measurements in the investigation of brain dynamics. We developed the multiple component, Event-Related Potential (mcERP) approach to single-trial response estimation. To improve our resolution of dynamic interactions between neuronal ensembles located in different layers within a cortical region and/or in different cortical regions. The mcERP model assets that multiple components defined as stereotypic waveforms comprise the stimulus-evoked response and that these components may vary in amplitude and latency from trial to trial. Maximum a posteriori (MAP) solutions for the model are obtained by iterating a set of equations derived from the posterior probability. Our first goal was to use the ANTWERP algorithm to analyze interactions (specifically latency and amplitude correlation) between responses in different layers within a cortical region. Thus, we evaluated the model by applying the algorithm to synthetic data containing two correlated local components and one independent far-field component. Three cases were considered: the local components were correlated by an interaction in their single-trial amplitudes, by an interaction in their single-trial latencies, or by an interaction in both amplitude and latency. We then analyzed the accuracy with which the algorithm estimated the component waveshapes and the single-trial parameters as a function of the linearity of each of these relationships. Extensions of these analyses to real data are discussed as well as ongoing work to incorporate more detailed prior information.
机译:准确测量单次试验响应是在脑动力学研究中明确使用复杂的电磁和血液动力学测量结果的关键。我们开发了多组件事件相关电位(mcERP)方法进行单次试验响应估计。为了提高我们对位于皮质区域内和/或不同皮质区域内不同层的神经元集合之间动态相互作用的分辨率。 mcERP模型资产包含被定义为定型波形的多个组件,包括刺激诱发的响应,并且这些组件的幅度和潜伏期可能因试验而异。该模型的最大后验(MAP)解是通过迭代从后验概率得出的一组方程式获得的。我们的第一个目标是使用ANTWERP算法来分析皮质区域内不同层之间的响应之间的交互作用(特别是等待时间和幅度相关性)。因此,我们通过将该算法应用于包含两个相关的局部分量和一个独立的远场分量的合成数据来评估该模型。考虑了三种情况:局部成分通过单次尝试振幅的相互作用,单次试验潜伏期的相互作用或振幅和潜伏时间的相互作用而相互关联。然后,我们分析了算法估算分量波形和单次试验参数的准确性,这些准确性是这些关系中每个关系的线性度的函数。讨论了将这些分析扩展到真实数据,以及正在进行的工作以合并更详细的先前信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号